Grid-to-Point Deep-Learning Error Correction for the Surface Weather Forecasts of a Fine-Scale Numerical Weather Prediction System
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Yu Qin | Yubao Liu | Xinyu Jiang | Zhaoyang Huo | Yueqin Shi | Li Yang | Haixiang Xu
[1] Yubao Liu,et al. Wind Speed Forecasts of a Mesoscale Ensemble for Large-Scale Wind Farms in Northern China: Downscaling Effect of Global Model Forecasts , 2022, Energies.
[2] Yubao Liu,et al. Seasonal variation of the surface wind forecast performance of the high-resolution WRF-RTFDDA system over China , 2021 .
[3] Haonan Chen,et al. A Deep Learning Method for Bias Correction of ECMWF 24–240 h Forecasts , 2021, Advances in Atmospheric Sciences.
[4] J. Zhong,et al. Weather Forecasting Using Ensemble of Spatial-Temporal Attention Network and Multi-Layer Perceptron , 2020, Asia-Pacific Journal of Atmospheric Sciences.
[5] Cheolhee Yoo,et al. Comparative Assessment of Various Machine Learning‐Based Bias Correction Methods for Numerical Weather Prediction Model Forecasts of Extreme Air Temperatures in Urban Areas , 2020, Earth and Space Science.
[6] Pingwen Zhang,et al. A Model Output Machine Learning Method for Grid Temperature Forecasts in the Beijing Area , 2019, Advances in Atmospheric Sciences.
[7] Maurice Schmeits,et al. Comparing Area Probability Forecasts of (Extreme) Local Precipitation Using Parametric and Machine Learning Statistical Postprocessing Methods , 2018, Monthly Weather Review.
[8] Yoshua Bengio,et al. On the Spectral Bias of Neural Networks , 2018, ICML.
[9] Guiling Wang,et al. Assessing simulated summer 10-m wind speed over China: influencing processes and sensitivities to land surface schemes , 2018, Climate Dynamics.
[10] Stephan Rasp,et al. Neural networks for post-processing ensemble weather forecasts , 2018, Monthly Weather Review.
[11] Luca Delle Monache,et al. An Evaluation of Analog-Based Postprocessing Methods across Several Variables and Forecast Models , 2015 .
[12] L. D. Monache,et al. An analog ensemble for short-term probabilistic solar power forecast , 2015 .
[13] Peter Bauer,et al. The quiet revolution of numerical weather prediction , 2015, Nature.
[14] Sergey Ioffe,et al. Batch Normalization: Accelerating Deep Network Training by Reducing Internal Covariate Shift , 2015, ICML.
[15] M. Benini,et al. Comparison of the economic impact of different wind power forecast systems for producers , 2014 .
[16] Luca Delle Monache,et al. Probabilistic Weather Prediction with an Analog Ensemble , 2013 .
[17] Geoffrey E. Hinton,et al. ImageNet classification with deep convolutional neural networks , 2012, Commun. ACM.
[18] R. Stull,et al. Kalman Filter and Analog Schemes to Postprocess Numerical Weather Predictions , 2011 .
[19] H. Shimodaira,et al. Improving predictive inference under covariate shift by weighting the log-likelihood function , 2000 .
[20] M. Homleid,et al. Diurnal Corrections of Short-Term Surface Temperature Forecasts Using the Kalman Filter , 1995 .
[21] H. Glahn,et al. The Use of Model Output Statistics (MOS) in Objective Weather Forecasting , 1972 .
[22] Jacob Cohen. Statistical Power Analysis for the Behavioral Sciences , 1969, The SAGE Encyclopedia of Research Design.
[23] B. M. Lewis,et al. OBJECTIVE PREDICTION OF FIVE-DAY MEAN TEMPERATURES DURING WINTER , 1959 .